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arxiv:2505.21880

Incorporating LLMs for Large-Scale Urban Complex Mobility Simulation

Published on May 28
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Abstract

An urban mobility simulation framework integrates a Large Language Model with Agent-Based Modeling to enhance agent diversity and realism, providing actionable insights for urban planners.

AI-generated summary

This study presents an innovative approach to urban mobility simulation by integrating a Large Language Model (LLM) with Agent-Based Modeling (ABM). Unlike traditional rule-based ABM, the proposed framework leverages LLM to enhance agent diversity and realism by generating synthetic population profiles, allocating routine and occasional locations, and simulating personalized routes. Using real-world data, the simulation models individual behaviors and large-scale mobility patterns in Taipei City. Key insights, such as route heat maps and mode-specific indicators, provide urban planners with actionable information for policy-making. Future work focuses on establishing robust validation frameworks to ensure accuracy and reliability in urban planning applications.

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